To automatically identify arbitrarily-shaped clusters in point data, a theory of point process decomposition based on kth Nearest Neighbour distance is proposed. We assume that a given set of point data is a mixture of homogeneous processes which can be separated according to their densities. Theoretically, the local density of a point is measured by its kth nearest distance. The theory is divided into three parts. First, an objective function of the kth nearest distance is constructed, where a point data set is modelled as a mixture of probability density functions (pdf) of different homogeneous processes. Second, we use two different methods to separate the mixture into different distinct pdfs, representing different homogeneous processes...
We proposed an approach that has the ability to detect spatial clusters with skewed or irregular dis...
The theory of point processes is a branch of spatial statistics. A spatial (and spatiotemporal) poin...
The task of discriminating between heterogeneity and complete spatial randomness (CSR) for a given p...
National Natural Science Foundation of China 41171345;Chinese Academy of Sciences KZCX2-YW-QN303;N...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
In this paper we propose a clustering technique to separate and find out the two main component of s...
This paper introduces a strategy for clustering point clouds generated by a spatial point process. T...
A temporal point process is a sequence of points, each representing the occurrence time of an event....
International audienceWe present a new type of point process, called Grouping/Degrouping Point Proce...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
5 pages, 1 figure, 2 tables.-- 10th International Workshop on Spatio-Temporal Modelling, Lleida (Spa...
A spatial point process can be considered a random measure and therefore represented as a countable ...
8th Iberian Mathematical Meeting, October 5-7 2022, SevillaA common question when a given point proc...
We proposed an approach that has the ability to detect spatial clusters with skewed or irregular dis...
The theory of point processes is a branch of spatial statistics. A spatial (and spatiotemporal) poin...
The task of discriminating between heterogeneity and complete spatial randomness (CSR) for a given p...
National Natural Science Foundation of China 41171345;Chinese Academy of Sciences KZCX2-YW-QN303;N...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When clusters with different densities and noise lie in a spatial point set, the major obstacle to c...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
In this paper we propose a clustering technique to separate and find out the two main component of s...
This paper introduces a strategy for clustering point clouds generated by a spatial point process. T...
A temporal point process is a sequence of points, each representing the occurrence time of an event....
International audienceWe present a new type of point process, called Grouping/Degrouping Point Proce...
In a spatial point set, clustering patterns (features) are difficult to locate due to the presence o...
5 pages, 1 figure, 2 tables.-- 10th International Workshop on Spatio-Temporal Modelling, Lleida (Spa...
A spatial point process can be considered a random measure and therefore represented as a countable ...
8th Iberian Mathematical Meeting, October 5-7 2022, SevillaA common question when a given point proc...
We proposed an approach that has the ability to detect spatial clusters with skewed or irregular dis...
The theory of point processes is a branch of spatial statistics. A spatial (and spatiotemporal) poin...
The task of discriminating between heterogeneity and complete spatial randomness (CSR) for a given p...